Accessible, At-Home Detection of Parkinson's Disease via Multi-task Video Analysis
Md Saiful Islam, Tariq Adnan, Jan Freyberg, Sangwu Lee, Abdelrahman, Abdelkader, Meghan Pawlik, Cathe Schwartz, Karen Jaffe, Ruth B. Schneider, E, Ray Dorsey, Ehsan Hoque

TL;DR
This paper presents a multimodal, at-home Parkinson's detection system using video analysis of finger tapping, facial expressions, and speech, employing a novel uncertainty-aware fusion network to improve diagnostic accuracy and accessibility.
Contribution
Introduces UFNet, a multi-task, uncertainty-calibrated deep learning model that fuses multimodal video data for improved Parkinson's diagnosis from home environments.
Findings
UFNet outperforms single-task models in accuracy, AUROC, and sensitivity.
Withholding uncertain predictions increases accuracy to 88% and AUROC to 93%.
Model shows no bias across sex and ethnicity, effective for ages 50-80.
Abstract
Limited accessibility to neurological care leads to underdiagnosed Parkinson's Disease (PD), preventing early intervention. Existing AI-based PD detection methods primarily focus on unimodal analysis of motor or speech tasks, overlooking the multifaceted nature of the disease. To address this, we introduce a large-scale, multi-task video dataset consisting of 1102 sessions (each containing videos of finger tapping, facial expression, and speech tasks captured via webcam) from 845 participants (272 with PD). We propose a novel Uncertainty-calibrated Fusion Network (UFNet) that leverages this multimodal data to enhance diagnostic accuracy. UFNet employs independent task-specific networks, trained with Monte Carlo Dropout for uncertainty quantification, followed by self-attended fusion of features, with attention weights dynamically adjusted based on task-specific uncertainties. To ensure…
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Videos
Taxonomy
TopicsParkinson's Disease Mechanisms and Treatments · Advanced Computing and Algorithms · Video Coding and Compression Technologies
MethodsSoftmax · Attention Is All You Need · Focus · Dropout · Monte Carlo Dropout
